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I am rather new to using SQL statements, and am having a little trouble using them to select the desired columns from a large table and pulling them into R.

I want to take a csv file and read selected columns into r, in particular, every 9th and 10th column. In R, something like:

read.csv.sql("myfile.csv", sql(select * from file [EVERY 9th and 10th COLUMN])

My trawl of the internet suggests that selecting every nth row could be done with an SQL statement using MOD something like this (please correct me if I am wrong):

        FROM   file

Is there a way to make this work for columns? Thanks in advance.

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which RDBMS are you using? Your title says nth column and you question says nth row - which one is it? –  Preet Sangha Mar 12 '13 at 22:28
@PreetSangha With sqldf it should be using SQLite as a back end. –  joran Mar 12 '13 at 22:34
Thanks I didn't know that. –  Preet Sangha Mar 12 '13 at 22:35
Sorry for the confusion, it is column I am interested in. I've edited the original post. Joran is right, it is SQLite –  jennifer.cl Mar 12 '13 at 22:45
sqldf uses sqlite by default and also works with h2, mysql and postgresql. –  G. Grothendieck Mar 12 '13 at 22:51

1 Answer 1

read.csv read.csv would be adequate for this:

# determine number of columns
DF1 <- read.csv(myfile, nrows = 1)
nc <- ncol(DF1)

# create a list nc long where unwanted columns are NULL and wanted are NA
colClasses <- rep(rep(list("NULL", NA), c(8, 2)), length = nc)

# read in
DF <- read.csv(myfile, colClasses = colClasses)

sqldf To use sqldf replace the last line with these:

nms <- names(DF1)
vars <- toString(nms[is.na(colClasses)])
DF <- fn$read.csv.sql(myfile, "select $vars from file")

UPDATE: switched to read.csv.sql

UPDATE 2: correction.

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Thanks so much! The read.csv method works splendidly for small test files, but I'm hesitant to use it on my 251 MB file, read.csv has wreaked havok on my poor 32-bit R with big files before. Would the colClasses modification, are the number of operations significantly cut down? For the sqldf function, I'm a little unfamiliar with the syntax..how do I specify my the file in fn$sqldf? Does the .csv file have to be preloaded into a database? If I was going to use read.csv.sql to save a step, do you if I could keep the same SQL syntax? Ie, read.csv.sql(myfile, sql="select $vars from file" –  jennifer.cl Mar 12 '13 at 23:37
Have switched to read.csv.sql. You may need to use other arguments to read.csv.sql as well depending on what the precise format of your file is. See ?read.csv.sql . In terms of performance I think you really have to try it on your data to get a feel for it. Try it with a 1 MB subset of rows, say. –  G. Grothendieck Mar 13 '13 at 1:37
The read.csv.sql method gives me the following error:"Error in sqliteExecStatement(con, statement, bind.data) : RS-DBI driver: (error in statement: near ".1": syntax error)". Does this look at all familiar? It works fine (without the column removal) when the SQL statement is left off, and the colClasses works on the read.csv method, so it seems to be the syntax of the sql statment that is throwing it off. Any ideas? Thanks again for all your help, very much appreciated. –  jennifer.cl Mar 13 '13 at 5:06
None of the other arguments seemed to be relevant, but if it helps at all my data is all either numeric or single characters. –  jennifer.cl Mar 13 '13 at 5:31
Using this data cat("a,b,c,d,e,f,g,h,i,j,k,l\n1,a,b,4,5,6,7,8,a,10,11,12\n", file = "test.dat"); myfile <- "test.dat" it all works fine for me so there is nothing fundamentally wrong with the code. You will need to provide it in minimal reproducible form. –  G. Grothendieck Mar 13 '13 at 12:49

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